Classification based on event in survival machine learning analysis of cardiovascular disease cohort

Author:

Ahmad Shokh Mukhtar,Ahmed Nawzad Muhammed

Abstract

AbstractThe aim of this study is to assess the effectiveness of supervised learning classification models in predicting patient outcomes in a survival analysis problem involving cardiovascular patients with a significant cured fraction. The sample comprised 919 patients (365 females and 554 males) who were referred to Sulaymaniyah Cardiac Hospital and followed up for a maximum of 650 days between 2021 and 2023. During the research period, 162 patients (17.6%) died, and the cure fraction in this cohort was confirmed using the Mahler and Zhu test (P < 0.01). To determine the best patient status prediction procedure, several machine learning classifications were applied. The patients were classified into alive and dead using various machine learning algorithms, with almost similar results based on several indicators. However, random forest was identified as the best method in most indicators, with an Area under ROC of 0.934. The only weakness of this method was its relatively poor performance in correctly diagnosing deceased patients, whereas SVM with FP Rate of 0.263 performed better in this regard. Logistic and simple regression also showed better performance than other methods, with an Area under ROC of 0.911 and 0.909 respectively.

Publisher

Springer Science and Business Media LLC

Subject

Cardiology and Cardiovascular Medicine

Reference20 articles.

1. World Health Organization. (2018). Cardiovascular Diseases (CVDs). Retrieved from https://www.who.int/news-room/fact-sheets/detail/cardiovascular-diseases-(cvds). Accessed 15 March 2023.

2. Kleinbaum DG, Klein M. Survival analysis: a Self-Learning text. 3rd ed. Springer Science & Business Media; 2012.

3. Wang Y, Liu X, Li L, et al. A machine learning approach for predicting cardiovascular disease risk based on clinical data. BMC Med Inf Decis Mak. 2019;19(1):211.

4. Krittanawong C, Zhang H, Wang Z, et al. Deep learning for Cardiovascular Medicine: a practical primer. J Am Coll Cardiology: Cardiovasc Imaging. 2020;13(8):1916–26.

5. Hastie T, Tibshirani R, Friedman J. The elements of statistical learning: Data Mining, Inference, and Prediction. Springer; 2009.

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